LGAIPLMLOct 23, 2018

Ain't Nobody Got Time For Coding: Structure-Aware Program Synthesis From Natural Language

arXiv:1810.09717v28 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of automating software development for programmers and enabling end-user programming, though it appears incremental as it builds on prior methods.

The authors tackled the problem of program synthesis from natural language by developing SAPS, an end-to-end neural network that maps multi-sentence specifications to executable code, achieving over 92% correctness on a large dataset.

Program synthesis from natural language (NL) is practical for humans and, once technically feasible, would significantly facilitate software development and revolutionize end-user programming. We present SAPS, an end-to-end neural network capable of mapping relatively complex, multi-sentence NL specifications to snippets of executable code. The proposed architecture relies exclusively on neural components, and is trained on abstract syntax trees, combined with a pretrained word embedding and a bi-directional multi-layer LSTM for processing of word sequences. The decoder features a doubly-recurrent LSTM, for which we propose novel signal propagation schemes and soft attention mechanism. When applied to a large dataset of problems proposed in a previous study, SAPS performs on par with or better than the method proposed there, producing correct programs in over 92% of cases. In contrast to other methods, it does not require post-processing of the resulting programs, and uses a fixed-dimensional latent representation as the only interface between the NL analyzer and the source code generator.

Foundations

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